Hiya, Yes that would work, also an aggregate with merge can work, but I really would like to make this a parallel calculation with farming out the first loop to different workers and put the output together again into the data.frame with additional columns. This will speed up work with very large files and avoid running out of memory issues
Cheers H XXXXXXXXXXXXXXXXXXXXXX Petr wrote XXXXXXXXXXXXXXXXXXXXXXXXXXXX Hi I may be completely wrong but isn't it work for ave? With your example I get > fac<-interaction(xyz[,1], xyz[,2], drop=TRUE) > xyz[,4]<-ave(xyz$z, fac, FUN= min) > head(xyz) x y z mins 1 13 15 1.97 -2.91 2 17 9 14.90 -2.81 3 9 10 34.68 -1.97 4 17 6 4.26 -2.63 5 3 12 0.12 0.12 6 19 11 7.91 7.91 > Cheers Petr > -----Original Message----- > From: R-help [mailto:[hidden email]] On Behalf Of > [hidden email] > Sent: Thursday, August 4, 2016 3:32 AM > To: [hidden email] > Subject: [R] foreach {parallel} nested with for loop to update data.frame > column > > Hi List, > > Trying to update a data.frame column within a foreach nested for loop > > ### trial data > set.seed(666) > xyz<-as.data.frame(cbind(x=rep(rpois(5000,10),2)+1, > y=rep(rpois(5000,10),2)+1,z=round(runif(10000, min=-3, max=40),2))) > xyz$mins<-rep(NA, nrow(xyz)) > > cl<-makeCluster(16) #adjust to your cluster number > registerDoParallel(cl) > > counter=0 > foreach(i=unique(xyz[,1]), .combine=data.frame, .verbose=T) %dopar% { > for( j in unique(xyz[,2])) { > xyz[xyz[,2] == j ,4]<-min(xyz[xyz[,2] == j ,2]) > } > > } > > stopCluster(cl) > > This is obviously not working. Any hints? > > Thanx > Herry ______________________________________________ R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.